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Approximate clustering in very large relational data

机译:在非常大的关系数据中进行近似聚类

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Different extensions of fuzzy c-means (FCM) clustering have been developed to approximate FCM clustering in very large (unloadable) image (eFFCM) and object vector (geFFCM) data. Both extensions share three phases: (1) progressive sampling of the VL data, terminated when a sample passes a statistical goodness of fit test; (2) clustering with (literal or exact) FCM; and (3) noniterative extension of the literal clusters to the remainder of the data set. This article presents a comparable method for the remaining case of interest, namely, clustering in VL relational data. We will propose and discuss each of the four phases of eNERF and our algorithm for this last case: (1) finding distinguished features that monitor progressive sampling, (2) progressively sampling a square N X N relation matrix R-N until an n X n sample relation R-n passes a statistical test, (3) clustering R-n with literal non-Euclidean relational fuzzy c-means, and (4) extending the clusters in R-n to the remainder of the relational data. The extension phase in this third case is not as straightforward as it was in the image and object data cases, but our numerical examples suggest that eNERF has the same approximation qualities that eFFCM and geFFCM do. (c) 2006 Wiley Periodicals, Inc.
机译:已经开发了模糊c均值(FCM)聚类的不同扩展,以在非常大的(不可加载)图像(eFFCM)和对象向量(geFFCM)数据中近似FCM聚类。这两个扩展共享三个阶段:(1)VL数据的渐进采样,在样本通过统计拟合优度检验时终止。 (2)与(文字或确切)FCM聚类; (3)将文字簇非迭代地扩展到数据集的其余部分。本文为感兴趣的其余情况提供了一种可比较的方法,即在VL关系数据中进行聚类。我们将针对这最后一种情况提出和讨论eNERF的四个阶段中的每个阶段以及我们的算法:(1)找到监视渐进采样的显着特征,(2)逐步采样一个方形NXN关系矩阵RN直到n X n采样关系Rn通过了统计检验,(3)用文字非欧几里得关系模糊c均值对Rn进行聚类,并且(4)将Rn中的聚类扩展到关系数据的其余部分。在第三种情况下,扩展阶段并不像在图像和对象数据情况下那样简单,但是我们的数值示例表明,eNERF具有与eFFCM和geFFCM相同的近似质量。 (c)2006年Wiley Periodicals,Inc.

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